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COMPARING METHODS FOR IMPUTING EMPLOYER HEALTH INSURANCE CONTRIBUTIONS IN THE CURRENT POPULATION SURVEY

August 2013

Working Paper Number:

CES-13-41

Abstract

The degree to which firms contribute to the payment of workers' health insurance premiums is an important consideration in the measurement of income and for understanding the potential impact of the 2010 Affordable Care Act on employment-based health insurance participation. Currently the U.S. Census Bureau imputes employer contributions in the Annual Social and Economic Supplement of the Current Population Survey based on data from the 1977 National Medical Care Expenditure Survey. The goal of this paper is to assess the extent to which this imputation methodology produces estimates reflective of the current distribution of employer contributions. The paper uses recent contributions data from the Medical Expenditure Panel Survey-Insurance Component to estimate a new model to inform the imputation procedure and to compare the resulting distribution of contributions. These new estimates are compared with those produced under current production methods across employee and employer characteristics.

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Keywords Keywords are automatically generated using KeyBERT, a powerful and innovative keyword extraction tool that utilizes BERT embeddings to ensure high-quality and contextually relevant keywords.

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:
estimation, estimating, respondent, earnings, employed, estimates employment, imputation, expenditure, insurance, enrollment, coverage, premium, healthcare, medicaid, insurance employer, health insurance, coverage employer, compensation, insurance coverage, insurance premiums, imputed, imputation model

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Standard Statistical Establishment List, Service Annual Survey, National Income and Product Accounts, Current Population Survey, Medical Expenditure Panel Survey, Agency for Healthcare Research and Quality, Business Register, Office of Personnel Management

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